Gezan Salvador A, Osorio Luis F, Verma Sujeet, Whitaker Vance M
School of Forest Resources and Conservation, University of Florida , 363 Newins-Ziegler Hall, PO Box 110410, Gainesville, FL 32611-0410, USA.
Gulf Coast Research and Education Center, University of Florida , 14625 CR 672, Wimauma, FL 33598, USA.
Hortic Res. 2017 Jan 11;4:16070. doi: 10.1038/hortres.2016.70. eCollection 2017.
The primary goal of genomic selection is to increase genetic gains for complex traits by predicting performance of individuals for which phenotypic data are not available. The objective of this study was to experimentally evaluate the potential of genomic selection in strawberry breeding and to define a strategy for its implementation. Four clonally replicated field trials, two in each of 2 years comprised of a total of 1628 individuals, were established in 2013-2014 and 2014-2015. Five complex yield and fruit quality traits with moderate to low heritability were assessed in each trial. High-density genotyping was performed with the Affymetrix Axiom IStraw90 single-nucleotide polymorphism array, and 17 479 polymorphic markers were chosen for analysis. Several methods were compared, including Genomic BLUP, Bayes B, Bayes C, Bayesian LASSO Regression, Bayesian Ridge Regression and Reproducing Kernel Hilbert Spaces. Cross-validation within training populations resulted in higher values than for true validations across trials. For true validations, Bayes B gave the highest predictive abilities on average and also the highest selection efficiencies, particularly for yield traits that were the lowest heritability traits. Selection efficiencies using Bayes B for parent selection ranged from 74% for average fruit weight to 34% for early marketable yield. A breeding strategy is proposed in which advanced selection trials are utilized as training populations and in which genomic selection can reduce the breeding cycle from 3 to 2 years for a subset of untested parents based on their predicted genomic breeding values.
基因组选择的主要目标是通过预测那些没有表型数据的个体的表现,来提高复杂性状的遗传增益。本研究的目的是通过实验评估基因组选择在草莓育种中的潜力,并确定其实施策略。在2013 - 2014年和2014 - 2015年建立了四个克隆复制的田间试验,每年两个,总共1628个个体。每个试验评估了五个具有中度到低度遗传力的复杂产量和果实品质性状。使用Affymetrix Axiom IStraw90单核苷酸多态性阵列进行高密度基因分型,并选择17479个多态性标记进行分析。比较了几种方法,包括基因组最佳线性无偏预测(Genomic BLUP)、贝叶斯B(Bayes B)、贝叶斯C(Bayes C)、贝叶斯套索回归(Bayesian LASSO Regression)、贝叶斯岭回归(Bayesian Ridge Regression)和再生核希尔伯特空间(Reproducing Kernel Hilbert Spaces)。训练群体内的交叉验证结果值高于跨试验的真实验证结果值。对于真实验证,贝叶斯B平均给出了最高的预测能力,同时也给出了最高的选择效率,特别是对于遗传力最低的产量性状。使用贝叶斯B进行亲本选择的选择效率范围从平均果实重量的74%到早期适销产量的34%。提出了一种育种策略,其中将高级选择试验用作训练群体,并且基因组选择可以基于未测试亲本的预测基因组育种值,将其育种周期从3年缩短到2年。